基于多层次重心轮廓的仿射不变形状识别

K. Thoum, Y. Kitjaidure, S. Kondo
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引用次数: 7

摘要

为了在计算机视觉识别任务中减少中等程度的噪声,提高检索效率,提出了一种由多级质心轮廓生成的多分辨率图像。然后,在质心轮廓的每一层引入两点(TAR-2p)特征的三角形面积表示作为形状表示。最后,利用各层次的归一化互相关函数来度量形状之间的相似性。我们的实验是在MPEG-7轮廓形状数据库CE-1中选择的560个仿射畸变形状数据库上进行的。结果表明,该算法对仿射变换具有不变性,对噪声具有鲁棒性。与三点三角形面积表示(TAR-3p)签名和质心距离签名相比,该方法具有更高的检索效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Affine Invariant Shape Recognition Based on Multi-Level of Barycenter Contour
In this paper, a new multiresolution created from multi-level of barycenter contour is proposed in order to reduce the moderate amount of noise and to improve the retrieval efficiency of the recognition task in computer vision. Then, the triangle area representation with two points (TAR-2p) signature at each level of barycenter contour is introduced as the shape representation. Finally, the normalized cross-correlation function at each level is used for measuring the similarity among the shapes. Our experiment has been performed on database consisting of 560 affine distorted shapes, chosen from MPEG-7 contour shape database CE-1. The results illustrate that our algorithm is invariant to affine transformation, robustness to the noise. Moreover, it achieves high retrieval efficiencies when compares to those of the Triangle Area Representation with three points (TAR-3p) signature and the centroid distance signature.
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